Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx

Background and aim<p>Covert hepatic encephalopathy (CHE) is a neurocognitive complication affecting 40.9–50.4% of patients with cirrhosis. It often remains undiagnosed owing to its subclinical nature and the limitations of existing diagnostic tools, which are constrained by subjectivity, varia...

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Auteur principal: Yilong Liu (8952695) (author)
Autres auteurs: Kai Ding (783198) (author), Yifan Qiu (13729363) (author), Peiqin Wang (7446626) (author), Ruoyao Wang (13947481) (author), Xin Zeng (174828) (author), Chuan Yin (2866601) (author)
Publié: 2025
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author Yilong Liu (8952695)
author2 Kai Ding (783198)
Yifan Qiu (13729363)
Peiqin Wang (7446626)
Ruoyao Wang (13947481)
Xin Zeng (174828)
Chuan Yin (2866601)
author2_role author
author
author
author
author
author
author_facet Yilong Liu (8952695)
Kai Ding (783198)
Yifan Qiu (13729363)
Peiqin Wang (7446626)
Ruoyao Wang (13947481)
Xin Zeng (174828)
Chuan Yin (2866601)
author_role author
dc.creator.none.fl_str_mv Yilong Liu (8952695)
Kai Ding (783198)
Yifan Qiu (13729363)
Peiqin Wang (7446626)
Ruoyao Wang (13947481)
Xin Zeng (174828)
Chuan Yin (2866601)
dc.date.none.fl_str_mv 2025-11-25T06:15:57Z
dc.identifier.none.fl_str_mv 10.3389/fmed.2025.1686005.s001
dc.relation.none.fl_str_mv https://figshare.com/articles/dataset/Data_Sheet_1_Interpretable_machine_learning_model_for_predicting_covert_hepatic_encephalopathy_in_patients_with_cirrhosis_a_multicenter_study_docx/30703772
dc.rights.none.fl_str_mv CC BY 4.0
info:eu-repo/semantics/openAccess
dc.subject.none.fl_str_mv Foetal Development and Medicine
covert hepatic encephalopathy
machine learning
SHapley Additive exPlanations
cirrhosis
LightGBM
dc.title.none.fl_str_mv Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx
dc.type.none.fl_str_mv Dataset
info:eu-repo/semantics/publishedVersion
dataset
description Background and aim<p>Covert hepatic encephalopathy (CHE) is a neurocognitive complication affecting 40.9–50.4% of patients with cirrhosis. It often remains undiagnosed owing to its subclinical nature and the limitations of existing diagnostic tools, which are constrained by subjectivity, variable sensitivity, and limited accessibility. This study aims to develop and validate interpretable machine learning (ML) models for predicting CHE in patients with cirrhosis using multidimensional clinical and lifestyle data.</p>Methods<p>This retrospective study included 503 patients with liver cirrhosis from 16 medical centers in China. CHE was diagnosed using the psychometric hepatic encephalopathy score and EncephalApp Stroop tests. Recursive feature elimination and Pearson’s correlation analysis were used for feature selection. Eight ML models were implemented to predict CHE. Performance was assessed via AUC, sensitivity, specificity, and decision curve analysis. The SHapley Additive exPlanations (SHAP) values are interpreted by the optimal model.</p>Results<p>The light gradient boosting machine (LightGBM) model achieved the highest area under the receiver operating characteristic (ROC) curve (AUC) of 0.810 in the training set and 0.710 in the validation set. Decision curve analysis showed that LightGBM had better diagnostic performance than random forest (RF) and eXtreme gradient boosting (XGBoost). The SHAP analysis identified key predictors of CHE, including lower Mini-Mental State Examination (MMSE) scores, older age, hypoalbuminemia, lack of prior computer usage, and higher blood urea nitrogen levels.</p>Conclusion<p>This study presents a novel ML-based approach for predicting CHE in cirrhotic patients, with LightGBM offering the best balance of performance and interpretability. The identified clinical and demographic predictors could facilitate early CHE detection and personalized management, ultimately improving outcomes for this high-risk population.</p>
eu_rights_str_mv openAccess
id Manara_146696c94a3b04b335c401f9734a2aa9
identifier_str_mv 10.3389/fmed.2025.1686005.s001
network_acronym_str Manara
network_name_str ManaraRepo
oai_identifier_str oai:figshare.com:article/30703772
publishDate 2025
repository.mail.fl_str_mv
repository.name.fl_str_mv
repository_id_str
rights_invalid_str_mv CC BY 4.0
spelling Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docxYilong Liu (8952695)Kai Ding (783198)Yifan Qiu (13729363)Peiqin Wang (7446626)Ruoyao Wang (13947481)Xin Zeng (174828)Chuan Yin (2866601)Foetal Development and Medicinecovert hepatic encephalopathymachine learningSHapley Additive exPlanationscirrhosisLightGBMBackground and aim<p>Covert hepatic encephalopathy (CHE) is a neurocognitive complication affecting 40.9–50.4% of patients with cirrhosis. It often remains undiagnosed owing to its subclinical nature and the limitations of existing diagnostic tools, which are constrained by subjectivity, variable sensitivity, and limited accessibility. This study aims to develop and validate interpretable machine learning (ML) models for predicting CHE in patients with cirrhosis using multidimensional clinical and lifestyle data.</p>Methods<p>This retrospective study included 503 patients with liver cirrhosis from 16 medical centers in China. CHE was diagnosed using the psychometric hepatic encephalopathy score and EncephalApp Stroop tests. Recursive feature elimination and Pearson’s correlation analysis were used for feature selection. Eight ML models were implemented to predict CHE. Performance was assessed via AUC, sensitivity, specificity, and decision curve analysis. The SHapley Additive exPlanations (SHAP) values are interpreted by the optimal model.</p>Results<p>The light gradient boosting machine (LightGBM) model achieved the highest area under the receiver operating characteristic (ROC) curve (AUC) of 0.810 in the training set and 0.710 in the validation set. Decision curve analysis showed that LightGBM had better diagnostic performance than random forest (RF) and eXtreme gradient boosting (XGBoost). The SHAP analysis identified key predictors of CHE, including lower Mini-Mental State Examination (MMSE) scores, older age, hypoalbuminemia, lack of prior computer usage, and higher blood urea nitrogen levels.</p>Conclusion<p>This study presents a novel ML-based approach for predicting CHE in cirrhotic patients, with LightGBM offering the best balance of performance and interpretability. The identified clinical and demographic predictors could facilitate early CHE detection and personalized management, ultimately improving outcomes for this high-risk population.</p>2025-11-25T06:15:57ZDatasetinfo:eu-repo/semantics/publishedVersiondataset10.3389/fmed.2025.1686005.s001https://figshare.com/articles/dataset/Data_Sheet_1_Interpretable_machine_learning_model_for_predicting_covert_hepatic_encephalopathy_in_patients_with_cirrhosis_a_multicenter_study_docx/30703772CC BY 4.0info:eu-repo/semantics/openAccessoai:figshare.com:article/307037722025-11-25T06:15:57Z
spellingShingle Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx
Yilong Liu (8952695)
Foetal Development and Medicine
covert hepatic encephalopathy
machine learning
SHapley Additive exPlanations
cirrhosis
LightGBM
status_str publishedVersion
title Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx
title_full Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx
title_fullStr Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx
title_full_unstemmed Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx
title_short Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx
title_sort Data Sheet 1_Interpretable machine learning model for predicting covert hepatic encephalopathy in patients with cirrhosis: a multicenter study.docx
topic Foetal Development and Medicine
covert hepatic encephalopathy
machine learning
SHapley Additive exPlanations
cirrhosis
LightGBM